0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Environmental Sources Policy & Risk Sign in to save

Web-Based Information and Analytical Monitoring System Tools – Online Visualization and Analysis of Surface Water Quality of Mining and Chemical Enterprises

Ecological Engineering & Environmental Technology 2023 10 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Natalia Bernatska, Elvira Dzhumelia, Vasyl Dyakiv, Olena Mitryasova, Іван Саламон

Summary

Researchers developed a web-based information and analytical monitoring system for visualizing and analyzing surface water quality data from a Ukrainian mining and chemical enterprise, providing tools to track contamination trends and forecast environmental changes in real time.

An analysis of the quality of surface water of State Enterprise “Rozdil Mining and Chemical Enterprise “Sirka”” was carried out. It was established that in order to ensure ecological balance in the zone of influence of State Enterprise “Rozdil Mining and Chemical Enterprise “Sirka”” it is necessary to conduct regular monitoring observations, maintenance, supervision and control over the condition of hydraulic structures, elimination of sources of pollution. The obtained research results indicate that there is a need to create an information and analytical monitoring system in order to effectively store, process, and analyze the data based on the principles of comprehensive environmental monitoring for the collection, storage, and processing of data on pollution of various elements of the environment, which will provide forecasting of environmental changes in the territory of the mining and chemical enterprise. On the basis of the obtained research results, a web application was created based on an interactive map of water sampling points, visualization of the obtained results of hydrochemical monitoring of Rozdil Lakes, and a forecast of the state of the water environment.

Sign in to start a discussion.

More Papers Like This

Article Tier 2

Design and Analysis of a Water Quality Monitoring Data Service Platform

Researchers designed a water quality monitoring data service platform that integrates real-time data collection with analysis and data mining capabilities, addressing gaps in traditional systems that focus solely on collection while ignoring dirty data and transmission failures.

Article Tier 2

A WebGIS-Based System for Supporting Saline–Alkali Soil Ecological Monitoring: A Case Study in Yellow River Delta, China

Researchers developed a web-based geographic information system for monitoring and predicting soil ecological conditions in the Yellow River Delta region of China, an area affected by saline-alkali soils. The system uses machine learning models to assess soil health indicators and provides online visualization and prediction tools. This platform could help land managers make more informed decisions about agricultural practices and environmental risk reduction in vulnerable soil ecosystems.

Article Tier 2

Water Quality Monitoring And Ground Water Level Prediction Using Machine Learning

Researchers applied machine learning techniques to water quality monitoring and groundwater level prediction, demonstrating the potential of data-driven approaches for environmental sensing and resource management.

Article Tier 2

ОЦІНКА ЯКОСТІ ТА ЕКОЛОГІЧНИЦЙ СТАН РІЧКИ САКСАГАНЬ У КОНТЕКСТІ ГОСПОДАРСЬКО-ПИТНОГО ТА РИБОГОСПОДАРСЬКОГО ПРИЗНАЧЕННЯ

This Ukrainian-language study assessed the water quality and ecological status of the Saksahan River in the context of its suitability for drinking water supply and fisheries management, in a region affected by intensive iron ore mining and significant mine water discharge. The research characterized the specific hydrochemical conditions resulting from industrial exploitation of the Kryvbas ore deposits.

Article Tier 2

Cloud-Based Smart Water Quality Monitoring System using IoT Sensors and Machine Learning

Researchers developed a cloud-based smart water quality monitoring system using IoT sensors and machine learning to detect contamination parameters such as pH, nitrate, conductivity, and fecal coliform in real time. The system applies machine learning classification to correlated sensor data to enable early detection of health hazards from contaminated water sources.

Share this paper